StatementSuppose we have for i = 1, . . ., n, where βj are non-random but unobservable parameters, Xij are non-random and observable (called the "explanatory variables"), εi are random , and so Yi are random. The random variables εi are called the "errors" (not to be confused with "residuals"; see errors and residuals in statistics). Note that to include a constant in the model above, one can choose to include the XiK = 1. The Gauss–Markov assumptions state that (i.e., all errors have the same variance; that is "homoscedasticity"), and for in which the coefficients cij are not allowed to depend on the earlier coefficients β, since those are not observable, but are allowed to depend on X, since this data is observable, and whose expected value remains βj even if the values of X change. (The dependence of the coefficients on X is typically nonlinear; the estimator is linear in Y and hence in ε which is random; that is why this is "linear" regression.) The estimator is unbiased iff Now, let i.e., it is the expectation of the square of the difference between the estimator and the parameter to be estimated. (The mean squared error of an estimator coincides with the estimator's variance if the estimator is unbiased; for biased estimators the mean squared error is the sum of the variance and the square of the bias.) A best linear unbiased estimator of β is the one with the smallest mean squared error for every linear combination λ. This is equivalent to the condition that is a positive semi-definite matrix for every other linear unbiased estimator The ordinary least squares estimator (OLS) is the function of Y and X that minimizes the sum of squares of residuals (It is easy to confuse the concept of error introduced early in this article, with this concept of residual. For an account of the differences and the relationship between them, see errors and residuals in statistics). The theorem now states that the OLS estimator is a BLUE. The main idea of the proof is that the least-squares estimator isuncorrelated with every linear unbiased estimator of zero, i.e., with every linear combination Generalized least squares estimatorThe GLS or Aitken estimator extends the Gauss-Markov Theorem to the case where the error vector has a non-scalar covariance matrix – the Aitken estimator is also a BLUE. [1] See also
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